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International Journal of Technology & Emerging Research

e-ISSN: 3068-109X p-ISSN: 3068-1995 DOI: 10.64823 Current Volume: 2 — Issue 6 (2026)
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Open Access Research Article
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A Hybrid Machine Learning–Deep Learning Framework for Explainable and Scalable Digital Forensic Analysis

by Soni Rameshrao Ragho , Narendra Chaudhari

International Journal of Technology & Emerging Research 2026 , 2 (4) , 88–97

10.64823/ijter.2604010
Received: 17 Apr 2026 Published: 18 Apr 2026
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Abstract

The intensive development of new digital technologies, cloud computing, and networked systems made the amount and complexity of the digital evidence in cases of cybercrime investigation significantly greater. Manual and rule-based digital forensic techniques cannot manage large-scale heterogeneous and real-time data environments. Such systems are not always scalable, interpretable, and robust, which restricts their applicability in the current cyber threats. To address these issues, this paper suggests a Hybrid AI-Based Forensic Intelligence Framework that could be used to analyze digital evidence in scales and provide an explanation and real-time analysis. The suggested framework will combine some of the latest methods of artificial intelligence, such as machine learning, deep learning, and explainable artificial intelligence (XAI), to automate and improve the process of forensics. It helps in preprocessing data, feature extractions, anomaly detection, correlation of evidence and transparent decision making. The system can effectively handle a wide range of sources of data including system logs, network traffic, and multimedia artifacts using scalable hybrid models. Also, explainability properties provide legal reliability and transparency of forensic results. The experimental findings indicate that there are better accuracy, scalability, and reliability as opposed to traditional tools and single-model solutions. On the whole, the framework offers a powerful and intelligent approach to digital forensics in the modern context related to the investigation and making decisions more efficient in a complex cybercrime situation.

Keywords: Digital Forensics, Artificial Intelligence, Explainable AI, Cybersecurity, Machine Learning, Real-Time Evidence Analysis, Forensic Intelligence Framework

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